Alpha-Stable Consistent Model Specification Tests for Heavy-Tailed Neural Networks Environments
This paper investigates applications of stable-law limiting theory to model specification tests in which non-linearities are sought in data that exhibit bounded maximal moments. Utilizing the stable-laws allows us for the first time to prove that consistent conditional moment tests (CM) of a functional form within neural network environments are not chi-squared in distribution. In addition, we prove that CM tests suffer a dramatic loss in power when moments greater than two are infinite. Furthermore, we offer for the first time a set of computationally cheapest statistics that are stable-functionals of suitable moment conditions. The new statistics are suitable for all iid and serially dependent data processes and are directly applicable to neural network learning in financial time-series models. The stable-law statistics are invariant to moment condition failure, remain maximally powerful under mild conditions, and do not require a restrictive orthogonality condition under the null hypothesis. Simulation experiments indicate that CM tests are far more likely to predict non-linearity erroneously in data than true chi-squared distributions imply. Moreover, in comparison, for certain data environments, the new stable-law statistics demonstrate perfect power for all levels of moment condition failure.
Year of publication: |
1999-03-01
|
---|---|
Authors: | Hill, Jonathan |
Institutions: | Society for Computational Economics - SCE |
Saved in:
Saved in favorites
Similar items by person
-
The oil trading markets, 2003 - 2010: Analysis of market behaviour and possible policy responses
Turner, Adair, (2011)
-
Clarkson, Chris, (2003)
-
Kernel Methods for Small Sample and Asymptotic Tail Inference for Dependent, Heterogeneous Data
Hill, Jonathan, (2006)
- More ...